Branches of Artificial Intelligence.pdf.

763 views 10 slides Mar 25, 2024
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About This Presentation

The PowerPoint presentation titled "Branches of Artificial Intelligence (AI): Exploring the Landscape" serves as an in-depth exploration into the multifaceted domain of artificial intelligence. This presentation aims to dissect the vast, intricate world of AI by delving into its various b...


Slide Content

Branches of Artificial Intelligence
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Introduction
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Artificial intelligence (AI) is the process of
providing computers with human-like thinking and
learning capabilities. It means showing kids how
to make judgments based on rules, learn from
information, and correct themselves when they
make mistakes. AI is applied to a wide range of
jobs, from expert systems for specialized tasks to
programs that learn on the fly.

AI symbols
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Concepts-based AI, or symbol AI, is a type of
artificial intelligence that handles problems using
logic and symbols. Unlike other AI techniques,
visual artificial intelligence concentrates on using
rules and symbols to express knowledge and
reasoning over just data. Symbol AI stores data in
the form of symbols, which can stand in for
thoughts, concepts, or objects. Logical principles
are applied to alter these symbols to solve
problems or extract new information.

Machine Learning
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The area of artificial intelligence called machine
learning (ML) focuses on creating algorithms and
models that let computers learn from data and
make judgments or judgments without needing to
be explicitly programmed for every task.ML
algorithms have the goal to find patterns and
connections in big datasets so that the computer
can learn from experiences and instances.

Deep Learning
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Neural networks made of computers with
numerous layers are trained to perform tasks like
image and speech recognition, natural language
processing, and other pattern identification tasks.
Deep learning is a subset of machine learning.
Deep learning algorithms can automatically learn
features from raw data, in contrast to typical
machine learning algorithms that need features to
be constructed.

Natural Language
Processing (NLP)
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The study of artificial intelligence (AI) with a focus
on natural language interaction between
computers and people is known as natural
language processing, or NLP. It entails the creation
of models and algorithms that let computers
comprehend, interpret, and produce meaningful
and practical human language.

Computer Vision
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The objective of the artificial intelligence (AI) field
of computer vision is to help machines to
perceive, comprehend, and interpret visual
stimuli. It entails creating models and algorithms
that enable computers to extract relevant
information from digital photos or videos in a
manner akin to how people are able to interpret
visual data.

Robotics
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Within the field of artificial intelligence (AI),
robotics focuses on the creation, building, and
programming of robots such that they can carry
out activities either entirely on their own or with
little assistance from humans. By incorporating AI
with robotics, machines may behave, think, and
perceive in dynamic, complicated settings in a
manner that is like to how people do.

Expert Systems
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Expert networks are computer programs designed
to simulate a human expert's decision-making
process in a specific topic or field. These systems
use knowledge collected by human specialists and
encode it into a set of rules or heuristics to handle
complex issues. To put it simply, an expert system
is similar to having a virtual expert on a certain
topic who can offer guidance, decide what to do,
or solve issues based on his understanding and
capacity for reasoning.

Conclusion
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Every area of artificial intelligence (AI) advances
the creation of intelligent systems that can carry
out tasks that were previously exclusive to human
intelligence. Multimodal cooperation and
innovation will drive more developments in AI as
it develops, opening up new doors and prospects
in a range of sectors and fields.